计算机科学
学习管理
适应性学习
人工智能
知识管理
数据科学
机器学习
多媒体
作者
Vamsi Krishna Nadimpalli,Florian Häuser,Dominik Bittner,Lisa Grabinger,Susanne Staufer,Jürgen Mottok
标识
DOI:10.1145/3593663.3593681
摘要
Nowadays, learning management systems are widely employed in all educational institutions to instruct students as a result of the increasing in online usage. Today's learning management systems provide learning paths without personalizing them to the characteristics of the learner. Therefore, research these days is concentrated on employing AI-based strategies to personalize the systems. However, there are many different AI algorithms, making it challenging to determine which ones are most suited for taking into account the many different features of learner data and learning contents. This paper conducts a systematic literature review in order to discuss the AI-based methods that are frequently used to identify learner characteristics, organize the learning contents, recommend learning paths, and highlight their advantages and disadvantages.
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